FairPlay: Detecting and Deterring Online Customer Misbehavior
成果类型:
Article
署名作者:
Wu, Ji; Zheng, Zhiqiang (Eric); Zhao, J. Leon
署名单位:
Sun Yat Sen University; University of Texas System; University of Texas Dallas; The Chinese University of Hong Kong, Shenzhen
刊物名称:
INFORMATION SYSTEMS RESEARCH
ISSN/ISSBN:
1047-7047
DOI:
10.1287/isre.2021.1035
发表日期:
2021
页码:
1323-1346
关键词:
User-Generated Content
PUNISHMENT
IDENTITY
BEHAVIOR
communities
COOPERATION
BIAS
摘要:
Customer misbehavior is a serious and pervasive problem in firm-sponsored social media, yet prior studies provide limited insight into how firms should detect and manage it. To address this gap, we first develop a data science approach to detect customer misbehavior on social media and then devise intervention strategies to deter it. Specifically, we build on natural language processing and deep learning techniques to automatically detect customer misbehavior by mining customers' social media activities in collaboration with a leading apparel firm. The results show that our algorithmic solution achieves supe-rior performance, improving detection by 7%-9% compared with traditional methods. We then implement two types of intervention policies based on the focus theory of normative conduct that advocates the use of injunctive norms (i.e., a punishment policy) and descrip-tive norms (i.e., a common identity policy) to restrain customer misbehavior. We conduct field experiments with the firm to validate these policies. The experimental results indicate that punishment considerably reduces customer misbehavior in the short term, but this ef-fect decays over time, whereas common identity has a smaller but more persistent effect on misbehavior reduction. In addition, punishing dysfunctional customers decreases their purchase frequency, whereas imposing a common identity increases it. Interestingly, our results show that combining the two policies effectively alleviates the detrimental effect of punishment, especially in the long run. We examine the heterogeneous treatment effect on novice and experienced customers. Finally, a follow-up field experiment reveals that the disclosure of the use of an artificial intelligence detector improves the effectiveness of the intervention strategies, and this effect is more pronounced for the punishment and combi-nation strategies.